诱导多能干细胞
计算机科学
拉曼光谱
干细胞
纳米技术
管道(软件)
聚类分析
仿形(计算机编程)
计算生物学
再生医学
高分辨率
细胞分化
生物系统
基因组学
功能基因组学
光谱聚类
可扩展性
化学
人工智能
细胞
光谱成像
材料科学
生物
系统生物学
分辨率(逻辑)
作者
Piyush Raj,Menglu Li,Yukiko Ueyama-Toba,Hiroyuki Mizuguchi,Katsumasa Fujita,Ishan Barman
出处
期刊:Nano Letters
[American Chemical Society]
日期:2026-01-22
卷期号:26 (4): 1357-1365
标识
DOI:10.1021/acs.nanolett.5c05396
摘要
High-throughput, label-free monitoring of cellular differentiation remains a major challenge in stem cell biology and regenerative medicine. Raman spectroscopy offers rich molecular specificity without perturbing the cell state, but the analytical complexity of large, unlabeled spectral data sets has limited its adoption. Here, we introduce a scalable computational framework that adapts algorithms from single-cell genomics for the analysis of line-illumination Raman spectroscopy data. Applying this approach, we track the stepwise differentiation of human induced pluripotent stem cells into hepatocyte-like cells at single-cell resolution across more than 1.8 million spectra. By integration of unsupervised clustering with supervised learning, our pipeline enables rapid analysis (<2 min per imaging field), monitoring key biochemical markers, such as cytochromes, glycogen, and lipids, and real-time discrimination of successful and aberrant differentiation without labeling. This work establishes a generalizable strategy for Raman-based cell state profiling and supports non-invasive, in-line monitoring in stem cell manufacturing pipelines.
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